Abstract

In video coding, rate distortion optimized quantization (RDOQ), a popular version of soft-decision quantization (SDQ), achieves superior coding performance, however is ill-suited for hardware implementation due to its inherent sequential processing. On the other hand, deadzone hard-decision quantization (HDQ) is friendly to hardware implementation, however suffers from non-negligible coding performance degradation. This paper proposes a content-adaptive deadzone offset model to improve the coefficient-wise deadzone HDQ by imitating the behavior patterns of RDOQ. The contributions of this paper are characterized by twofold. On one hand, this work formulates seeking optimal deadzone offset model as a problem of binary classification, and analyzes the distribution characteristics of the optimal deadzone offsets obtained from samples by fully imitating RDOQ, and then derives adaptive deadzone offset model by maximizing the right classification probability of offset-induced rounding in HDQ. On the other hand, the distribution parameters of DCT coefficients are measured in a position-wise way, and the adaptive deadzone model is built by applying Maximum a posterior estimation method according to three characteristic parameters, i.e. quantization step size, parameter of DCT coefficients, and quantization remainder, in the sense of rate distortion optimization. Simulation results verify that the proposed adaptive HDQ algorithm, in comparison with fixed-offset HDQ, achieves 0.54% and 0.52% bit rate saving on average with almost negligible complexity increment. Simultaneously, the proposed algorithm only sacrifices smaller than 0.55% and 0.54% increment in terms of BD-BR in comparison with RDOQ. The proposed HDQ is well-suited for hardwired video coding implementation.

Highlights

  • Video coding systems based on H.26x and MPEG standards had been successfully employed in many multimedia applications

  • This work formulates seeking deadzone offset model as a problem of binary classification according to the zero-offset quantization remainder, and applies statistic analysis method to explore the distribution characteristics of the desired deadzone offsets obtained from samples by fully imitating the behavior of rate distortion optimized quantization (RDOQ), and derives adaptive deadzone offset model by maximizing the right classification probability of offsetinduced rounding in hard-decision quantization (HDQ)

  • Sequential processing hinders soft-decision quantization (SDQ and RDOQ) from effective hardware implementations, whilst hard-decision quantization (HDQ) suffers from obvious rate distortion performance loss compared with softdecision quantization (SDQ)

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Summary

INTRODUCTION

Video coding systems based on H.26x and MPEG standards had been successfully employed in many multimedia applications. Other works included reducing the number of candidate quantization results [23], employing fast computation for RD cost of candidate coefficient levels [24], and using fast bit rate evaluation [25]. These methods alleviate the computation burden in SDQ to certain degrees. This work formulates seeking deadzone offset model as a problem of binary classification according to the zero-offset quantization remainder, and applies statistic analysis method to explore the distribution characteristics of the desired deadzone offsets obtained from samples by fully imitating the behavior of RDOQ, and derives adaptive deadzone offset model by maximizing the right classification probability of offsetinduced rounding in HDQ.

CHALLENGES AND MOTIVATION
PROBLEM FORMULATION
STATISTIC ANALYSIS BASED MODEL BUILDING
4: Begin the Iteration for Intervals
THE ADAPTIVE DEADZONE OFFSET MODEL
ALGORITHM COMPLEXITY
Findings
CONCLUSION
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